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How Algorithms & Machine Learning Work

 
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Manage episode 211152493 series 1029588
Contenu fourni par Media Law Resource Center (MLRC), Berkeley Center for Law, and Technology (BCLT). Tout le contenu du podcast, y compris les épisodes, les graphiques et les descriptions de podcast, est téléchargé et fourni directement par Media Law Resource Center (MLRC), Berkeley Center for Law, and Technology (BCLT) ou son partenaire de plateforme de podcast. Si vous pensez que quelqu'un utilise votre œuvre protégée sans votre autorisation, vous pouvez suivre le processus décrit ici https://fr.player.fm/legal.

This session will begin with a tutorial on how algorithms and machine learning work in order to provide lawyers with a better understanding of how these technologies apply to solving real world problems. For example: how does machine learning help a review site spot fake reviews, a social media platform identify misinformation campaigns, or sites identify a banned user trying to rejoin the site under a new identity? Our tutorial will explore the limits of what algorithms and machine learning can and cannot do. The demonstration will be followed by a broader policy discussion, which will explore some of the practical, legal and ethical challenges of using algorithms:

• Since it’s almost impossible to run a large network with millions of users without algorithms, how do you strike the right balance between machine learning and human moderators for legal compliance and/or takedowns to comply with company policies, e.g., copyright, pornography, hate speech.

• Does more reliance on machines to make decisions create new problems like unfair takedowns and lack of transparency?

• Under what circumstances does legal liability for machine-made decisions attach?

• What happens when a government agency (such as under the new GDPR “right to an explanation”) requires platforms to disclose an explanation of algorithmic decision making and – not only is the algorithm proprietary – but the complexity of machine learning may make it impossible for even the platform to know precisely why a particular choice is made, e.g., why certain content was delivered.

Panelists:
Jim Dempsey, Executive Director, Berkeley Center for Law & Technology
Travis Brooks, Group Product Manager – Data Science and Data Product, Yelp (Tutorial)
Glynna Christian, Partner, Orrick
Cass Matthews, Senior Counsel, Jigsaw

http://www.medialaw.org/images/events/2018podcast/Algorithms.mp3
  continue reading

38 episodes

Artwork
iconPartager
 
Manage episode 211152493 series 1029588
Contenu fourni par Media Law Resource Center (MLRC), Berkeley Center for Law, and Technology (BCLT). Tout le contenu du podcast, y compris les épisodes, les graphiques et les descriptions de podcast, est téléchargé et fourni directement par Media Law Resource Center (MLRC), Berkeley Center for Law, and Technology (BCLT) ou son partenaire de plateforme de podcast. Si vous pensez que quelqu'un utilise votre œuvre protégée sans votre autorisation, vous pouvez suivre le processus décrit ici https://fr.player.fm/legal.

This session will begin with a tutorial on how algorithms and machine learning work in order to provide lawyers with a better understanding of how these technologies apply to solving real world problems. For example: how does machine learning help a review site spot fake reviews, a social media platform identify misinformation campaigns, or sites identify a banned user trying to rejoin the site under a new identity? Our tutorial will explore the limits of what algorithms and machine learning can and cannot do. The demonstration will be followed by a broader policy discussion, which will explore some of the practical, legal and ethical challenges of using algorithms:

• Since it’s almost impossible to run a large network with millions of users without algorithms, how do you strike the right balance between machine learning and human moderators for legal compliance and/or takedowns to comply with company policies, e.g., copyright, pornography, hate speech.

• Does more reliance on machines to make decisions create new problems like unfair takedowns and lack of transparency?

• Under what circumstances does legal liability for machine-made decisions attach?

• What happens when a government agency (such as under the new GDPR “right to an explanation”) requires platforms to disclose an explanation of algorithmic decision making and – not only is the algorithm proprietary – but the complexity of machine learning may make it impossible for even the platform to know precisely why a particular choice is made, e.g., why certain content was delivered.

Panelists:
Jim Dempsey, Executive Director, Berkeley Center for Law & Technology
Travis Brooks, Group Product Manager – Data Science and Data Product, Yelp (Tutorial)
Glynna Christian, Partner, Orrick
Cass Matthews, Senior Counsel, Jigsaw

http://www.medialaw.org/images/events/2018podcast/Algorithms.mp3
  continue reading

38 episodes

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